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Data Science Consultant

Delta Humans
Greater London
1 day ago
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Job Description

🚀 Senior Applied AI Consultant — London (Hybrid, 3 days in office)

We’re working with a multi-award-winning AI & Analytics company that’s transforming how global enterprises use data to understand and engage their customers.

They’ve been recognised as one of Europe’s fastest-growing tech firms and are trusted by some of the biggest household names across telecoms, financial services, and retail.

This is a rare opportunity to join a fast-scaling AI business that’s already delivering tangible commercial impact — from billions of behavioural data points to measurable ROI.

💡 The Opportunity

This role sits at the intersection of AI, data science, and consulting.

You’ll work directly with major enterprise clients, helping them apply advanced analytics and AI models to real-world business challenges — from customer insight to personalisation and growth.

Ideal for:

  • Data Scientists looking to move into a more strategic, client-facing role, or
  • Technical Consultants wanting to go deeper into applied AI and data science.

Expect a balance of hands-on technical delivery (≈50%) and consultative problem-solving (≈50%).

🔧 What You&rsq...

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